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索马里兰马罗德杰地区疟疾发病率预测模型的评估

Evaluation of prediction models for the malaria incidence in Marodijeh Region, Somaliland.

作者信息

Mohamed Jama, Mohamed Ahmed Ismail, Daud Eid Ibrahim

机构信息

Faculty of Mathematics and Statistics, College of Applied and Natural Science, University of Hargeisa, Hargeisa, Somaliland.

Faculty of Nutrition, College of Applied and Natural Science, University of Hargeisa, Hargeisa, Somaliland.

出版信息

J Parasit Dis. 2022 Jun;46(2):395-408. doi: 10.1007/s12639-021-01458-y. Epub 2021 Nov 17.

Abstract

Malaria is a major public health concern in tropics and subtropics. Accurate malaria prediction is critical for reporting ongoing incidences of infection and its control. Hence, the purpose of this investigation was to evaluate the performances of different models of predicting malaria incidence in Marodijeh region, Somaliland. The study used monthly historical data from January 2011 to December 2020. Five deterministic and stochastic models, i.e. Seasonal Autoregressive Moving Average (SARIMA), Holt-Winters' Exponential Smoothing, Harmonic Model, Seasonal and Trend Decomposition using Loess (STL) and Artificial Neural Networks (ANN), were fitted to the malaria incidence data. The study employed Root Mean Square Error (RMSE), Mean Absolute Error (MAE), Mean Absolute Percentage Error (MAPE) and Mean Absolute Scaled Error (MASE) to measure the accuracy of each model. The results indicated that the artificial neural network (ANN) model outperformed other models in terms of the lowest values of RMSE (39.4044), MAE (29.1615), MAPE (31.3611) and MASE (0.6618). The study also incorporated three meteorological variables (Humidity, Rainfall and Temperature) into the ANN model. The incorporation of these variables into the model enhanced the prediction of malaria incidence in terms of achieving better prediction accuracy measures (RMSE = 8.6565, MAE = 6.1029, MAPE = 7.4526 and MASE = 0.1385). The 2-year generated forecasts based on the ANN model implied a significant increasing trend. The study recommends the ANN model for forecasting malaria cases and for taking the steps to reduce malaria incidence during the times of year when high incidence is reported in the Marodijeh region.

摘要

疟疾是热带和亚热带地区主要的公共卫生问题。准确预测疟疾对于报告当前感染发病率及其控制至关重要。因此,本调查的目的是评估索马里兰马罗德杰地区不同疟疾发病率预测模型的性能。该研究使用了2011年1月至2020年12月的月度历史数据。将五个确定性和随机模型,即季节性自回归移动平均模型(SARIMA)、霍尔特-温特斯指数平滑法、谐波模型、使用局部加权回归散点平滑法的季节性和趋势分解模型(STL)以及人工神经网络(ANN),拟合到疟疾发病率数据上。该研究采用均方根误差(RMSE)、平均绝对误差(MAE)、平均绝对百分比误差(MAPE)和平均绝对尺度误差(MASE)来衡量每个模型的准确性。结果表明,人工神经网络(ANN)模型在RMSE(39.4044)、MAE(29.1615)、MAPE(31.3611)和MASE(0.6618)的最低值方面优于其他模型。该研究还将三个气象变量(湿度、降雨量和温度)纳入ANN模型。将这些变量纳入模型提高了疟疾发病率的预测,在实现更好的预测准确性指标方面(RMSE = 8.6565,MAE = 6.1029,MAPE = 7.4526,MASE = 0.1385)。基于ANN模型生成的两年预测显示出显著的上升趋势。该研究建议使用ANN模型来预测疟疾病例,并在马罗德杰地区报告高发病率的年份采取措施降低疟疾发病率。

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Epidemiology of malaria in endemic areas.疟疾在流行地区的流行病学。
Mediterr J Hematol Infect Dis. 2012;4(1):e2012060. doi: 10.4084/MJHID.2012.060. Epub 2012 Oct 4.

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